Graph-Sparse LDA: A Topic Model with Structured Sparsity
Graph-Sparse LDA: A Topic Model with Structured Sparsity
Originally designed to model text, topic modeling has become a powerful tool for uncovering latent structure in domains including medicine, finance, and vision. The goals for the model vary depending on the application: in some cases, the discovered topics may be used for prediction or some other downstream task. In other cases, the content of the topic itself may be of intrinsic scientific interest. Unfortunately, even using modern sparse techniques, the discovered topics are often difficult to interpret due to the high dimensionality of the underlying space. To improve topic interpretability, we introduce Graph-Sparse LDA, a hierarchical topic model that leverages knowledge of relationships between words (e.g., as encoded by an ontology). In our model, topics are summarized by a few latent concept-words from the underlying graph that explain the observed words. Graph-Sparse LDA recovers sparse, interpretable summaries on two real-world biomedical datasets while matching state-of-the-art prediction performance.
Finale Doshi-Velez、Ryan Adams、Byron Wallace
生物科学现状、生物科学发展生物科学研究方法、生物科学研究技术数学
Finale Doshi-Velez,Ryan Adams,Byron Wallace.Graph-Sparse LDA: A Topic Model with Structured Sparsity[EB/OL].(2014-10-16)[2025-05-03].https://arxiv.org/abs/1410.4510.点此复制
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